CYAIOct 14, 2024

Gender Bias of LLM in Economics: An Existentialism Perspective

arXiv:2410.19775v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

It addresses the problem of gender bias in LLMs for economic and financial decision-making, highlighting the need for new theoretical frameworks and interdisciplinary approaches to ensure fairness, though it is incremental in building on existing bias research.

This paper investigates gender bias in large language models (LLMs) like GPT-4 and BERT, showing through mathematical proofs and empirical experiments that they inherently reinforce gender stereotypes, even without explicit gender markers, and maintain bias as a rational outcome of optimization on biased data.

Large Language Models (LLMs), such as GPT-4 and BERT, have rapidly gained traction in natural language processing (NLP) and are now integral to financial decision-making. However, their deployment introduces critical challenges, particularly in perpetuating gender biases that can distort decision-making outcomes in high-stakes economic environments. This paper investigates gender bias in LLMs through both mathematical proofs and empirical experiments using the Word Embedding Association Test (WEAT), demonstrating that LLMs inherently reinforce gender stereotypes even without explicit gender markers. By comparing the decision-making processes of humans and LLMs, we reveal fundamental differences: while humans can override biases through ethical reasoning and individualized understanding, LLMs maintain bias as a rational outcome of their mathematical optimization on biased data. Our analysis proves that bias in LLMs is not an unintended flaw but a systematic result of their rational processing, which tends to preserve and amplify existing societal biases encoded in training data. Drawing on existentialist theory, we argue that LLM-generated bias reflects entrenched societal structures and highlights the limitations of purely technical debiasing methods. This research underscores the need for new theoretical frameworks and interdisciplinary methodologies that address the ethical implications of integrating LLMs into economic and financial decision-making. We advocate for a reconceptualization of how LLMs influence economic decisions, emphasizing the importance of incorporating human-like ethical considerations into AI governance to ensure fairness and equity in AI-driven financial systems.

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